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从动态模型学习并预测以监测新冠肺炎患者

Learning and Predicting from Dynamic Models for COVID-19 Patient Monitoring.

作者信息

Wang Zitong, Bowring Mary Grace, Rosen Antony, Garibaldi Brian, Zeger Scott, Nishimura Akihiko

机构信息

Department of Biostatistics, The Johns Hopkins University Bloomberg School of Public Health, Baltimore, MD, USA.

Departments of Biomedical Engineering and Biostatistics, The Johns Hopkins University School of Medicine, Baltimore, MD, USA.

出版信息

Stat Sci. 2022 May;37(2):251-265. doi: 10.1214/22-sts861. Epub 2022 May 16.

Abstract

COVID-19 has challenged health systems to learn how to learn. This paper describes the context, methods and challenges for learning to improve COVID-19 care at one academic health center. Challenges to learning include: (1) choosing a right clinical target; (2) designing methods for accurate predictions by borrowing strength from prior patients' experiences; (3) communicating the methodology to clinicians so they understand and trust it; (4) communicating the predictions to the patient at the moment of clinical decision; and (5) continuously evaluating and revising the methods so they adapt to changing patients and clinical demands. To illustrate these challenges, this paper contrasts two statistical modeling approaches - prospective longitudinal models in common use and retrospective analogues complementary in the COVID-19 context - for predicting future biomarker trajectories and major clinical events. The methods are applied to and validated on a cohort of 1,678 patients who were hospitalized with COVID-19 during the early months of the pandemic. We emphasize graphical tools to promote physician learning and inform clinical decision making.

摘要

新冠疫情给医疗卫生系统带来了挑战,促使其学会如何进行学习。本文描述了一家学术医疗中心为改善新冠治疗而进行学习的背景、方法和挑战。学习面临的挑战包括:(1)选择正确的临床目标;(2)通过借鉴既往患者的经验设计出准确预测的方法;(3)向临床医生传达该方法,使其理解并信任它;(4)在临床决策时将预测结果告知患者;(5)持续评估和修订方法,使其适应不断变化的患者情况和临床需求。为说明这些挑战,本文对比了两种统计建模方法——常用的前瞻性纵向模型和在新冠疫情背景下具有互补性的回顾性类似模型——用于预测未来生物标志物轨迹和重大临床事件。这些方法应用于一组在疫情早期因新冠住院的1678名患者,并在该队列中进行了验证。我们强调使用图形工具来促进医生学习并为临床决策提供信息。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/fdc9/10198065/b68b125b4c09/nihms-1844199-f0001.jpg

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